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EgoNetCloud: Event-based egocentric dynamic network visualization

机译:EGONETCLOUD:基于事件的Enocentric动态网络可视化

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Event-based egocentric dynamic networks are an important class of networks widely seen in many domains. In this paper, we present a visual analytics approach for these networks by combining data-driven network simplifications with a novel visualization design - EgoNetCloud. In particular, an integrated data processing pipeline is proposed to prune, compress and filter the networks into smaller but salient abstractions. To accommodate the simplified network into the visual design, we introduce a constrained graph layout algorithm on the dynamic network. Through a real-life case study as well as conversations with the domain expert, we demonstrate the effectiveness of the EgoNetCloud design and system in completing analysis tasks on event-based dynamic networks. The user study comparing EgoNetCloud with a working system on academic search confirms the effectiveness and convenience of our visual analytics based approach.
机译:基于事件的Enocentric动态网络是许多域中广泛看到的重要网络。在本文中,我们通过用新颖的可视化设计结合数据驱动的网络简化来提出这些网络的视觉分析方法 - EGONETCLOUD。特别地,建议将集成数据处理管道修剪,压缩和过滤到较小但突出的抽象。为了容纳进入视觉设计的简化网络,我们在动态网络上引入受约束的图形布局算法。通过真实的案例研究以及与域专家的对话,我们展示了EGONETCLoud设计和系统在完成基于事件的动态网络上的分析任务时的有效性。将EgoneTCloud与学术搜索工作系统进行比较的用户学习证实了我们基于视觉分析的方法的有效性和便利性。

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